A novel terminal sliding mode observer with RBF neural network for a class of nonlinear systems

التفاصيل البيبلوغرافية
العنوان: A novel terminal sliding mode observer with RBF neural network for a class of nonlinear systems
المؤلفون: Sharafian, Amin, Ghasemi, Reza
المصدر: International Journal of Systems, Control and Communications; 2018, Vol. 9 Issue: 4 p369-385, 17p
مستخلص: A novel scheme for designing a new observer with combining radial basis function neural network (RBFNN) and terminal sliding mode approaches is presented. Terminal sliding mode adopted to cover the effects of internal disturbances of the system and neural network handles the problem of uncertainties and unmodelled dynamics. Convergence of the observer error to zero and accurate estimation of uncertainties of the nonlinear system are the main advantages of the proposed observer. This observer is designed based on output injection method in which the error is injected to the next state in every step until it reaches the last state of the system. Eventually, the error is suppressed and converged to zero in the last state by applying RBFNN. The stability of neural network weights which are updated adaptively and the error dynamic are guaranteed by the Lyapunov theory. Finally, the simulation result shows the promising performances of the proposed observer.
قاعدة البيانات: Supplemental Index